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Large-scale search for stable tin alloys with machine learning potentials

ORAL

Abstract

We have recently developed an automated framework for generating accurate machine learning potentials (MLPs) to accelerate ab initio structure prediction. Following our predictions of new thermodynamically stable Li-Sn compounds, we have expanded the MLP-guided evolutionary ground state searches to several M-Sn binary systems (M = Na, Mg, Ca, Cu, Pd, and Ag). The systematic exploration of the full binary composition ranges has uncovered a number of new crystal structure phases thermodynamically stable at different pressures and temperatures.

Presenters

  • Daviti Gochitashvili

    SUNY Binghamton University

Authors

  • Daviti Gochitashvili

    SUNY Binghamton University

  • Aidan Thorn

    Binghamton University

  • Saba Kharabadze

    SUNY Binghamton University, Binghamton University

  • Aleksey Kolmogorov

    Binghamton University